We study a portfolio selection problem where a player attempts to maximise a utility function that represents the growth rate of wealth. We show that, given some stochastic predictions of the asset prices in the next time step, a sublinear expected regret is attainable against an optimal greedy algorithm, subject to tradeoff against the \accuracy" of such predictions that learn (or improve) over time. We also study the effects of introducing transaction costs into the model
textThis report discusses a multi-stage stochastic programming model that maximizes expected ending ...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
Published ArticleA multi-stage stochastic optimal portfolio policy that minimizes downside risk in t...
We study a portfolio selection problem where a player attempts to maximise a utility function that r...
We derive a closed-form solution to a continuous-time optimal portfolio selection problem with retur...
We study how financial predictions can be used in learning algorithms for problems such as portfolio...
This paper proposes an ex-post comparison of portfolio selection strategies. These are applied to c...
Adviser: Dr. Arindam BanerjeePeople make and lose vast sums of money every day on stock exchanges ar...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
As a fundamental problem in algorithmic trading, portfolio optimization aims to maximize the cumulat...
Directeur: Gabor LUGOSI President: Sylvain SORIN Membres du jury: Pascal MASSART, Nicolo CESA-BIANCH...
We consider the problem of constructing a portfolio of finitely many assets whose returns are descri...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
textThis report discusses a multi-stage stochastic programming model that maximizes expected ending ...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
Published ArticleA multi-stage stochastic optimal portfolio policy that minimizes downside risk in t...
We study a portfolio selection problem where a player attempts to maximise a utility function that r...
We derive a closed-form solution to a continuous-time optimal portfolio selection problem with retur...
We study how financial predictions can be used in learning algorithms for problems such as portfolio...
This paper proposes an ex-post comparison of portfolio selection strategies. These are applied to c...
Adviser: Dr. Arindam BanerjeePeople make and lose vast sums of money every day on stock exchanges ar...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
As a fundamental problem in algorithmic trading, portfolio optimization aims to maximize the cumulat...
Directeur: Gabor LUGOSI President: Sylvain SORIN Membres du jury: Pascal MASSART, Nicolo CESA-BIANCH...
We consider the problem of constructing a portfolio of finitely many assets whose returns are descri...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
textThis report discusses a multi-stage stochastic programming model that maximizes expected ending ...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
Published ArticleA multi-stage stochastic optimal portfolio policy that minimizes downside risk in t...